AM
Oct 8, 2019
I really enjoyed this course. Many details are given here that are crucial to gain experience and tips on things that looks easy at first sight but are important for a faster ML project implementation
XG
Oct 30, 2017
Thank you Andrew!! I know start to use Tensorflow, however, this tool is not well for a research goal. Maybe, pytorch could be considered in the future!! And let us know how to use pytorch in Windows.
By Ganesh M S
•Mar 31, 2018
The quality of the information is awesome. There are some minor bugs in the assignment section. Even though you have submitted the right answer it shows that you have secured 0 marks in that section. Apart from evaluation bug this course it super knowledgable.
By Kartik c
•Sep 5, 2017
There were a few mistakes in the output of the comments of the notebooks,Also sometimes my output did not match the expected output,still the assignment got graded correctly.Eg-The tensorflow notebook.I think it was because of the seed of the random processes.
By Vahid N
•Aug 4, 2018
Well-organized course. I gave it a four instead of a five just because the Tensorflow HW is not as good as other HWs. There should be more comments and more examples. Maybe there should be two HWs on Tensorflow to give me the confidence that I have leaned it.
By chandrashekar r
•Sep 12, 2017
I would rate this 4 for the following reasons:
1) Learnt all the optimizations.
2) Hyper Parameterizations
I would not rate this 5 for the following reasons:
1) Some more time could have been spent on tensorflow.
2) The assignments were just simple substitutions.
By Elpidio E G V
•Apr 23, 2019
Great explanations on behind the scenes operations of optimization algorithms and general theory. Coming from a more practical background, it helped me grasp the concepts much better. I only wish the programming exercises were a little bit more challenging!
By Amir M K
•Aug 27, 2022
Generaly it was good as expected! But the problem with this course was the programming assignment at week 3, where it did not include programming training for most it's content which where Hyperparameter tuning and batch norm and was all about TensorFlow!
By Ansh M
•Jun 26, 2020
It was a good course, with giving a great detail on tuning the Hyperparameters. I personally didn't myself found it useful as of now, but the course was good, and can be recommended to other people to fine-tune their networks. Jumping on the third course!
By Brook R
•Jan 12, 2020
Programming assignment was more difficult but the Course itself really built on the first course well. I struggled much less with the material and enjoyed it more. I also appreciate it being shorter despite having to restart because I had gone on vacation
By Prakash N
•Sep 25, 2021
I liked everything except the tensorflow part of the course. That was too quick, and the last assignment IMHO was not very useful. I did it mechanically just to complete the course. A full framework course is perhaps useful as part of the specialization.
By Ed S
•Sep 29, 2017
Overall very good. Many of the useful concepts did not have practical "coding" assignment.
It would have been great to have the opportunity to see how many of the tuning, regularization and optimization techniques can be mixed in a real world scenarios
By Lester A S D C
•Jun 21, 2019
The course teaches you well on how to optimize your neural network. The only problem I had was with week 2's programming assignment because the grader had problems with the "-=" operation. The lecture I enjoyed the most was the Adam Optimizer lecture.
By Nicolas B
•Jul 24, 2019
This is a very interresting course that go past basic deep neural network knowledge. I learned a lot. Still I would have like a bit more programming exercices to have more part of the theoretical course covered (batch norm, hyper parameters tunning).
By Tanay G
•Jan 26, 2020
This course taught me a lot of new concepts and tricks to speed up the training process as well as ways to reduce overfitting and biasing in a neural network. I would've liked the course even more if the instructors took a deeper dive in frameworks.
By Akshay G
•Aug 11, 2020
I learned a lot in this course but I feel like the assignments should be little big and less informative. The assignments are designed are good for then who are at base level but too short for someone who had their hands on once in neural networks.
By Joao N
•Nov 4, 2019
One again the course is a great follow up from the previous one. The only little detail I wish had been done was for the assignment to cover a scenario where we had to improve some hyperparameters by applying different approaches covered in class.
By 戚运动 B Q
•Apr 14, 2018
The course itself is great, but something out of the course is not so good, e.g. I can't see the video easily in China, and also the pictures in the exam can't be shown always, so I must take some guess to pass the exams, which is really a regret!
By Hanan S
•Dec 16, 2017
Not like the first course which was kind of "trying not to touch the details", this course is more organized and I felt I've learned something. Still I would improve TF training to get more into the details (what does reset global variables do?!)
By Davy C
•Oct 2, 2017
Interesting, but the quality of the exercises in not so good. There are at least 3-4 mistakes in the expected output that make you loose time double verifying. Mentor only seems to reply it is know, sounding like it has been like this for long...
By Nacho C
•Nov 9, 2017
It mixes a review of Neural Network tuning techniques, and brief intro to TensorFlow. Those are really two very different topics, but I guess it's just designed to fill about a month of the specialization.
NOT recommended as a standalone course!
By Joaquín T S
•Mar 24, 2021
This well-structured course guides you in understanding the importance of tuning hyperparameters as well as some regularization basics. I would give it 5 stars but for coding with Tensorflow < 2.0, what is really outdated in my honest opinion.
By 杨鹏程
•Jul 3, 2018
This is a very good course, but the content of the hyperparameter adjustment mostly stays in the theoretical analysis. The latter experimental course does not involve how to implement the program. I hope that it will be improved in the future.
By Martin K
•Dec 13, 2017
Great course. I learnt a lot again. Perhaps the programming exercises can be a little harder. Some things were quite literally spelled out which meant that you could theoretically copy/paste them into your code with only trivial adjustments.
By Mihajlo
•Feb 1, 2018
I liked the optimization lectures, and Andrew's style of teaching. Anyway, I feel that I didn't learn enough in this course, and that it is not on the same level of previous courses we got used to, like the original Machine Learning course.
By Stuart H
•Oct 14, 2021
A good introduction to the important details that go into training a neural network and why they are important. I appreciate how they explain it all from first principles, but I'm going to need to do some more courses to learn tensorflow.
By Faisal A
•Aug 11, 2018
This course was better than the first course in the specialization. The assignments were more sophisticated (though repetitive at times) and required more thought and work. The only down side is the monotone way of presenting the material.